EXPRESS: Mega还是Micro?使用追随者弹性选择影响者

IF 5.1 1区 管理学 Q1 BUSINESS Journal of Marketing Research Pub Date : 2023-10-15 DOI:10.1177/00222437231210267
Zijun Tian, Ryan Dew, Raghuram Iyengar
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引用次数: 1

摘要

网红营销,即企业赞助社交媒体名人来推广自己的品牌,近年来越来越受欢迎。选择网红合作伙伴的一个常见标准是受欢迎程度。一些公司与拥有数百万粉丝的“超级”网红合作,而另一些公司与只有几千粉丝的“微”网红合作,但他们的赞助成本也更低。为了量化受欢迎程度和成本之间的权衡,我们开发了一个框架来估计印象的追随者弹性,即FEI,它衡量视频在印象(即浏览量)上的百分比增长,对应于其创建者的追随者数量的百分比增长。计算FEI涉及估计网红的受欢迎程度对其视频观看次数的因果关系,我们通过以下组合来实现:(1)从TikTok收集的唯一数据集,(2)用于量化视频内容的表示学习模型,以及(3)基于机器学习的因果推理方法。我们发现FEI总是正的,平均为0.10,但通常与追随者规模非线性相关。我们研究了预测这些FEI曲线变化的因素,并展示了企业如何使用这些结果来更好地确定网红伙伴关系。
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EXPRESS: Mega or Micro? Influencer Selection Using Follower Elasticity
Influencer marketing, in which companies sponsor social media personalities to promote their brands, has exploded in popularity in recent years. One common criterion for selecting an influencer partner is popularity. While some firms collaborate with “mega” influencers with millions of followers, other firms partner with “micro” influencers with only several thousand followers, but who also cost less to sponsor. To quantify this trade-off between popularity and cost, we develop a framework for estimating the follower elasticity of impressions, or FEI, which measures a video’s percentage gain in impressions (i.e., views) corresponding to a percentage increase in the number of followers of its creator. Computing FEI involves estimating the causal effect of an influencer’s popularity on the view counts of their videos, which we achieve through a combination of: (1) a unique dataset collected from TikTok, (2) a representation learning model for quantifying video content, and (3) a machine learning-based causal inference method. We find that FEI is always positive, averaging 0.10, but often nonlinearly related to follower size. We examine the factors that predict variation in these FEI curves and show how firms can use these results to better determine influencer partnerships.
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来源期刊
CiteScore
10.30
自引率
6.60%
发文量
79
期刊介绍: JMR is written for those academics and practitioners of marketing research who need to be in the forefront of the profession and in possession of the industry"s cutting-edge information. JMR publishes articles representing the entire spectrum of research in marketing. The editorial content is peer-reviewed by an expert panel of leading academics. Articles address the concepts, methods, and applications of marketing research that present new techniques for solving marketing problems; contribute to marketing knowledge based on the use of experimental, descriptive, or analytical techniques; and review and comment on the developments and concepts in related fields that have a bearing on the research industry and its practices.
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